A pilot study to predict cardiac arrest in the pediatric intensive care unit

Resuscitation(2023)

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摘要
We have created high-performing models that identify signatures of in-hospital cardiac arrest (IHCA) that may not be evident to clinicians. These signatures include a combination of heart rate variability metrics, vital signs data, and therapeutic drug classes. These machine learning models can predict IHCA up to three hours prior to onset with high performance, allowing clinicians to intervene earlier, improving patient outcomes.
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关键词
Cardiac arrest,Machine learning,Predictive modeling,High frequency waveform data,Heart rate variability,Biomedical engineering,Computational medicine,Pediatric intensive care unit,Critical care medicine
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